Reinforcement Learning An Introduction 2nd Edition – AI & Machine Learning Textbook
Reinforcement Learning: An Introduction (Second Edition) is the definitive textbook on reinforcement learning and one of the most widely cited resources in artificial intelligence and machine learning research. Authored by leading AI pioneers Richard S. Sutton and Andrew G. Barto, this expanded edition provides a clear, structured, and accessible introduction to the principles, algorithms, and applications of reinforcement learning.
Available now from Book Depot Pro, this 2nd Edition has been significantly updated to reflect major advances in the field, making it essential for students, researchers, and professionals working in AI, robotics, data science, and computational neuroscience.
The book is organized into three carefully designed parts. Part I introduces core reinforcement learning concepts using tabular methods, including several algorithms newly added in this edition such as Upper Confidence Bound (UCB), Expected Sarsa, and Double Learning. Mathematical details are clearly separated into shaded sections, making the content approachable for readers with varying technical backgrounds.
Part II extends reinforcement learning to function approximation, covering modern techniques such as artificial neural networks, Fourier basis methods, off-policy learning, and policy-gradient approaches. Part III explores interdisciplinary connections with psychology and neuroscience and features updated real-world case studies including AlphaGo, AlphaGo Zero, Atari game playing, and IBM Watson’s wagering strategy. The final chapter examines the broader societal implications and future impact of reinforcement learning.
Whether you are studying machine learning, building intelligent agents, or conducting advanced AI research, Reinforcement Learning: An Introduction (2nd Edition) is a must-have reference. Order your copy today from Book Depot Pro, your reliable source for authentic computer science and AI textbooks.








